Approximation Algorithms for Semi-random Graph Partitioning Problems
نویسندگان
چکیده
In this paper, we propose and study a new semi-random model for graph partitioning problems. We believe that it captures many properties of real–world instances. The model is more flexible than the semi-random model of Feige and Kilian and planted random model of Bui, Chaudhuri, Leighton and Sipser. We develop a general framework for solving semi-random instances and apply it to several problems of interest. We present constant factor bi-criteria approximation algorithms for semi-random instances of the Balanced Cut, Multicut, Min Uncut, Sparsest Cut and Small Set Expansion problems. We also show how to almost recover the optimal solution if the instance satisfies an additional expanding condition. Our algorithms work in a wider range of parameters than most algorithms for previously studied random and semi-random models. Additionally, we study a new planted algebraic expander model and develop constant factor bi-criteria approximation algorithms for graph partitioning problems in this model.
منابع مشابه
Approximation Theory and the Design of Fast Algorithms
We survey key techniques and results from approximation theory in the context of uniform approximations to real functions such as e−x,1/x, and xk. We then present a selection of results demonstrating how such approximations can be used to speed up primitives crucial for the design of fast algorithms for problems such as simulating random walks, graph partitioning, solving linear system of equat...
متن کاملGraph Partitioning and Semi-definite Programming Hierarchies
Graph partitioning is a fundamental optimization problem that has been intensively studied. Many graph partitioning formulations are important as building blocks for divide-and-conquer algorithms on graphs as well as to many applications such as VLSI layout, packet routing in distributed networks, clustering and image segmentation. Unfortunately such problems are notorious for the huge gap betw...
متن کاملAlgorithms for streaming graphs
An algorithm solving a graph problem is usually expected to have fast random access to the input graph G and a working memory that is able to store G completely. These powerful assumptions are put in question by massive graphs that exceed common working memories and that can only be stored on disks or even tapes. Here, random access is very time-consuming. To tackle massive graphs stored on ext...
متن کاملSampling from social networks’s graph based on topological properties and bee colony algorithm
In recent years, the sampling problem in massive graphs of social networks has attracted much attention for fast analyzing a small and good sample instead of a huge network. Many algorithms have been proposed for sampling of social network’ graph. The purpose of these algorithms is to create a sample that is approximately similar to the original network’s graph in terms of properties such as de...
متن کاملCsc5160: Combinatorial Optimization and Approximation Algorithms Topic: Graph Partitioning Problems 18.1 Graph Partitioning Problems 18.1.2 Multiway Cut
This lecture gives a general introduction of graph partitioning problems. We will begin with the definitions of some classic graph partitioning problems (e.g. multiway cut, multicut, sparsest cut), and discuss their relationships. Then we will focus on deriving two approximation algorithms. For the multiway cut problem, we will show a 2-approximation algorithm through a combinatorial argument. ...
متن کاملذخیره در منابع من
با ذخیره ی این منبع در منابع من، دسترسی به آن را برای استفاده های بعدی آسان تر کنید
عنوان ژورنال:
- CoRR
دوره abs/1205.2234 شماره
صفحات -
تاریخ انتشار 2012